# How to calc percentage of interval in array [closed]

``````>>> import numpy as np
>>> standart_perc = [50, 75, 80, 85, 90, 95, 98, 99, 100]
>>> a = np.arange(110)
>>> np.percentile(a, standart_perc)
[54.5, 81.75, 87.200000000000003, 92.649999999999991, 98.100000000000009, 103.55, 106.81999999999999, 107.91, 109.0]
``````

How to calc percentage of values between 54.5 and 81.75, 81.75 and 87.200000000000003, etc .. ?

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## closed as off-topic by Andy Hayden, tcaswell, Ophion, Michael0x2a, André LaszloMar 1 '14 at 22:35

This question appears to be off-topic. The users who voted to close gave this specific reason:

• "Questions asking for code must demonstrate a minimal understanding of the problem being solved. Include attempted solutions, why they didn't work, and the expected results. See also: Stack Overflow question checklist" – Andy Hayden, tcaswell, Ophion
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numpy.histogram – user333700 Aug 23 '13 at 11:10

``````a[(a > 54.5) & (a <  81.75)].size / float(a.size)
``````

Update:

``````In [6]: a = np.random.randint(1, 110, 1000000)
In [7]: %%timeit
percentileofscore(a, 81.75) - percentileofscore(a, 54.5)
1 loops, best of 3: 373 ms per loop
In [8]: %%timeit
a[(a > 54.5) & (a <  81.75)].size / float(a.size)
10 loops, best of 3: 20.5 ms per loop
``````

It seems that `percentileofscore` is a lot slower.

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Thank You, that works. – greggyNapalm Aug 23 '13 at 13:06
A further improvement can likely be: `np.sum((a > 54.5) & (a < 81.75))/float(a.size)`. – Ophion Aug 23 '13 at 14:37
@Ophion Yes, but only around 15%. Not that dramatic... – Viktor Kerkez Aug 23 '13 at 14:52
@ViktorKerkez Odd its about 80% faster on my computer. – Ophion Aug 23 '13 at 15:00
@Ophion Probably depends on what library is NumPy compiled against. – Viktor Kerkez Aug 23 '13 at 15:09

I think you are looking for `scipy.stats.percentileofscore`:

``````percentileofscore(a, 54.5) == 50.
percentileofscore(a, 81.75) == 75.
``````

subtracting these will give you 25 (the percentage of scores between 54.5 and 81.75).

This means you can invert np.percentile using map, and then apply a shift and a subtract to get the "percentage if array in interval" you're after.

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Do like this using while loop in Python:

``````>>> a
[54.5, 81.75, 87.2, 92.64999999999999, 98.10000000000001, 103.55, 106.82, 107.91, 109.0]
>>> i = 0
>>> while i < len(a)-1:
...     print a[i]/a[i+1]*100
...     i = i+1
...
66.6666666667
93.75
94.1176470588
94.4444444444
94.7368421053
96.9387755102
98.9898989899
99.0
``````
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